Ahmadi Mohsen, Sharifi Abbas, Hassantabar Shayan, Enayati Saman
Department of Industrial Engineering, Urmia University of Technology (UUT), P.O. Box: 57166-419, Urmia, Iran.
Department of Mechanical Engineering, Urmia University of Technology (UUT), P.O. Box: 57166-419, Urmia, Iran.
Biomed Res Int. 2021 Jan 18;2021:6653879. doi: 10.1155/2021/6653879. eCollection 2021.
Tumor segmentation in brain MRI images is a noted process that can make the tumor easier to diagnose and lead to effective radiotherapy planning. Providing and building intelligent medical systems can be considered as an aid for physicians. In many cases, the presented methods' reliability is at a high level, and such systems are used directly. In recent decades, several methods of segmentation of various images, such as MRI, CT, and PET, have been proposed for brain tumors. Advanced brain tumor segmentation has been a challenging issue in the scientific community. The reason for this is the existence of various tumor dimensions with disproportionate boundaries in medical imaging. This research provides an optimized MRI segmentation method to diagnose tumors. It first offers a preprocessing approach to reduce noise with a new method called Quantum Matched-Filter Technique (QMFT). Then, the deep spiking neural network (DSNN) is implemented for segmentation using the conditional random field structure. However, a new algorithm called the Quantum Artificial Immune System (QAIS) is used in its SoftMax layer due to its slowness and nonsegmentation and the identification of suitable features for selection and extraction. The proposed approach, called QAIS-DSNN, has a high ability to segment and distinguish brain tumors from MRI images. The simulation results using the BraTS2018 dataset show that the accuracy of the proposed approach is 98.21%, average error-squared rate is 0.006, signal-to-noise ratio is 97.79 dB, and lesion structure criteria including the tumor nucleus are 80.15%. The improved tumor is 74.50%, and the entire tumor is 91.92%, which shows a functional advantage over similar previous methods. Also, the execution time of this method is 2.58 seconds.
脑磁共振成像(MRI)图像中的肿瘤分割是一个值得关注的过程,它可以使肿瘤更易于诊断,并有助于制定有效的放射治疗计划。提供和构建智能医疗系统可被视为对医生的一种辅助。在许多情况下,所提出方法的可靠性处于较高水平,此类系统可直接使用。近几十年来,已经提出了几种用于分割各种图像(如MRI、CT和PET)以检测脑肿瘤的方法。先进的脑肿瘤分割一直是科学界面临的一个具有挑战性的问题。原因在于医学成像中存在各种尺寸且边界不成比例的肿瘤。本研究提供了一种优化的MRI分割方法来诊断肿瘤。它首先提供一种预处理方法,使用一种名为量子匹配滤波技术(QMFT)的新方法来降低噪声。然后,使用条件随机场结构实现深度脉冲神经网络(DSNN)进行分割。然而,由于其速度慢、无法分割以及难以识别用于选择和提取的合适特征,在其SoftMax层中使用了一种名为量子人工免疫系统(QAIS)的新算法。所提出的方法称为QAIS-DSNN,具有很高的分割能力,能够从MRI图像中区分脑肿瘤。使用BraTS2018数据集的模拟结果表明,所提出方法的准确率为98.21%,平均误差平方率为0.006,信噪比为97.79dB,包括肿瘤细胞核在内 的病变结构标准为80.15%。改善后的肿瘤为74.50%,整个肿瘤为91.92%,这表明该方法相对于之前的类似方法具有功能优势。此外,该方法的执行时间为2.58秒。